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An Introduction To Mathematical Modeling Of Lake Processes For Management Decisions

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An Introduction To Mathematical Modeling Of Lake Processes For Management Decisions

Published Date

1987-02

Publisher

St. Anthony Falls Laboratory

Type

Report

Abstract

Use of Minnesota takes has increased, placing demands on lake managers to maintain or to improve water quality. Although many different management and lake rehabilitation techniques have proven effective, the complex nature of the in-lake processes makes selection of a technique and prediction of effectiveness very difficult. Lake managers are often confronted with expensive projects that must actually be tried to determine their effectiveness.

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St. Anthony Falls Laboratory Project Reports
249

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Legislative Commission On Minnesota Resources State Of Minnesota

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Hanson, Mark J.; Riley, Michael J.; Stefan, Heinz G.. (1987). An Introduction To Mathematical Modeling Of Lake Processes For Management Decisions. Retrieved from the University Digital Conservancy, https://hdl.handle.net/11299/117313.

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